Confidential guide on numerology and astrology, based of GG33 Public information

K8S-AI
Système de gestion de Kubernetes propulsé par AI: une plate-forme combinant le traitement du langage naturel avec la gestion de Kubernetes. Les utilisateurs peuvent effectuer des diagnostics en temps réel, une surveillance des ressources et une analyse des journaux intelligents. Il simplifie la gestion de Kubernetes via l'IA conversationnelle, fournissant une alternative moderne
3 years
Works with Finder
1
Github Watches
0
Github Forks
5
Github Stars
🎯 Kubernetes AI Management System
AI-Powered Kubernetes Management (MCP + Agent)
⎈ K8s AI Management
├── 🤖 MCP Server
├── 🔍 K8s Tools
└── 🚀 Agent mode with Rest API
✨ Overview
This project combines the power of AI with Kubernetes management. Users can perform real-time diagnostics, resource monitoring, and smart log analysis. It simplifies Kubernetes management through conversational AI, providing a modern alternative.
💡 Just ask questions naturally - no need to memorize commands!
🏗️ Project Structure
The project is organized into the following modules:
- agent: Agent mode backed by Rest API to analyze the cluster using natural language
- mcp-server: MCP server backed by tools which can be integrated with MCP host (like Claude desktop) to provide a full experience
- tools: Kubernetes tools for cluster analysis/management (used by both agent and mcp-server)
🎁 Features
This AI-powered system understands natural language queries about your Kubernetes cluster. Here are some of the capabilities provided by the system which can be queried using natural language:
🏥 Cluster Health and Diagnostics
- "What's the status of my cluster?"
- "Show me all pods in the default namespace"
- "Are there any failing pods? in default namespace"
- "What's using the most resources in my cluster?"
- "Give me a complete health check of the cluster"
- "Are there any nodes not in Ready state?"
- "Show me pods in default namespace that have been running for more than 7 days"
- "Identify any pods running in default namespace with high restart counts"
🌐 Network Analysis
- "Show me the logs for the payment service"
- "List all ingresses in the cluster"
- "Show me all services and their endpoints"
- "Check if my service 'api-gateway' has any endpoints"
- "Show me all exposed services with external IPs"
💾 Storage Management
- "List all persistent volumes in the cluster"
- "Show me storage claims that are unbound"
- "What storage classes are available in the cluster?"
- "Which pods are using persistent storage?"
- "Are there any storage volumes nearing capacity?"
⏱️ Job and CronJob Analysis
- "List all running jobs in the batch namespace"
- "Show me failed jobs from the last 24 hours"
- "What CronJobs are scheduled to run in the next hour?"
- "Show me the execution history of the 'backup' job"
⎈ Helm Release Management
- "List all Helm releases"
- "Upgrade the MongoDB chart to version 12.1.0"
- "What values are configured for my Prometheus release?"
- "Rollback the failed Elasticsearch release"
- "Show me the revision history for my Prometheus release"
- "Compare values between different Helm releases"
- "Check for outdated Helm charts in my cluster"
- "What are the dependencies for my Elasticsearch chart?"
Note: The system uses AI to analyze patterns in logs, events, and resource usage to provide intelligent diagnostics and recommendations.
🛠️ Prerequisites
Requirement | Version |
---|---|
☕ JDK | 17 or later |
🧰 Maven | 3.8 or later |
⎈ Minikube/Any Kubernetes cluster | Configured ~/.kube/config |
Note: The system uses the kubeconfig file from
~/.kube/config
, so make sure it is properly configured.
🏗️ 1. Project Build
# Build all modules
mvn clean package
# Run the MCP server
java -jar mcp-server/target/mcp-server-1.0-SNAPSHOT.jar
# Alternatively, run the agent directly
java -jar agent/target/agent-*-fat.jar
🛠️ 2. Minikube setup
Install minikube and create a nginx deployment:
# Install minikube
brew install minikube
# Start minikube
minikube start
# Make sure kubeconfig is set
kubectl config use-context minikube
# Deploy nginx
kubectl create deployment nginx --image=nginx:latest
# Check whether nginx is running
kubectl get pods
Note: You should see
nginx
pod in the output
🛠️ 3. Testing project
🤝 3.1 MCP Server integration with Claude Desktop
Refer to mcp-server/README.md for instructions on how to integrate with Claude Desktop
3.2. Agent Mode with Rest API
Refer to agent/README.md for instructions on how to run the agent
📄 License
This project is licensed under the MIT License - see the LICENSE file for details.
相关推荐
Advanced software engineer GPT that excels through nailing the basics.
Japanese education, creating tailored learning experiences.
I find academic articles and books for research and literature reviews.
Embark on a thrilling diplomatic quest across a galaxy on the brink of war. Navigate complex politics and alien cultures to forge peace and avert catastrophe in this immersive interstellar adventure.
Découvrez la collection la plus complète et la plus à jour de serveurs MCP sur le marché. Ce référentiel sert de centre centralisé, offrant un vaste catalogue de serveurs MCP open-source et propriétaires, avec des fonctionnalités, des liens de documentation et des contributeurs.
Manipulation basée sur Micropython I2C de l'exposition GPIO de la série MCP, dérivée d'Adafruit_MCP230XX
La communauté du curseur et de la planche à voile, recherchez des règles et des MCP
MCP Server pour récupérer le contenu de la page Web à l'aide du navigateur sans tête du dramwright.
Un puissant plugin Neovim pour gérer les serveurs MCP (Protocole de contexte modèle)
🔥 1Panel fournit une interface Web intuitive et un serveur MCP pour gérer des sites Web, des fichiers, des conteneurs, des bases de données et des LLM sur un serveur Linux.
Pont entre les serveurs Olllama et MCP, permettant aux LLM locaux d'utiliser des outils de protocole de contexte de modèle
Reviews

user_kx164ySt
I've been thoroughly impressed with k8s-ai by hariohmprasath. It's an incredibly robust tool for deploying AI applications using Kubernetes. The GitHub repository (https://github.com/hariohmprasath/k8s-ai) provides clear documentation and seamless integration, making it a joy to use. Highly recommended for anyone in need of a scalable AI deployment solution!